Universal Genetic Programming: a Meta Learning Approach based on Semantics
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @PhdThesis{Re:thesis,
-
author = "Alessandro Re",
-
title = "Universal Genetic Programming: a Meta Learning
Approach based on Semantics",
-
school = "NOVA Information Management School (NIMS),
Universidade Nova de Lisboa",
-
year = "2018",
-
address = "Lisbon, Portugal",
-
month = nov,
-
keywords = "genetic algorithms, genetic programming, GSGP,
Universal Genetic Programming, UGP, Meta learning,
Semantics",
-
URL = "http://hdl.handle.net/10362/79664",
-
URL = "https://run.unl.pt/bitstream/10362/79664/1/D0052.pdf",
-
size = "101 pages",
-
abstract = "With the advancements of Machine Learning, the number
of predictive models that can be used in a given
situation has grown incredibly, and scientists willing
to use Machine Learning have to spend a significant
amount of time in searching, testing and tuning those
models. This has an inevitable impact on the research
quality. Many scientists are currently working on
different approaches to automate this process by
devising algorithms that can tune, select or combine
multiple models for a specific application. This is the
case of ensemble methods, hyper-heuristics and
meta-learning algorithms. There have been great
progresses in this direction, but typical approaches
lack the presence of an unifying structure onto which
these ensemble, hyper or meta algorithms are developed.
In this thesis we discuss about a new meta-learning
method based on Geometric Semantic Genetic Programming.
The milestone introduced by this approach is the use of
semantics as an intermediate representation to work
with models of different nature. We will see how this
approach is general and can be applied with any model,
in particular we will apply this case to regression
problems and we will test our hypotheses by
experimental verification over some datasets for
real-life problems.",
-
notes = "Supervisors: Mauro Castelli and Leonardo Vanneschi",
- }
Genetic Programming entries for
Alessandro Re
Citations